4.6 Article

BEAST 2: A Software Platform for Bayesian Evolutionary Analysis

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PLOS COMPUTATIONAL BIOLOGY
卷 10, 期 4, 页码 -

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PUBLIC LIBRARY SCIENCE
DOI: 10.1371/journal.pcbi.1003537

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资金

  1. Rutherford Discovery Fellowship from the Royal Society of New Zealand
  2. Marsden from the Royal Society of New Zealand [UOA0809]
  3. National Institutes of Health [R01 HG006139]
  4. National Science Foundation [DMS-0856099, DMS-1264153]
  5. Division Of Mathematical Sciences
  6. Direct For Mathematical & Physical Scien [1264153, 0856099] Funding Source: National Science Foundation

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We present a new open source, extensible and flexible software platform for Bayesian evolutionary analysis called BEAST 2. This software platform is a re-design of the popular BEAST 1 platform to correct structural deficiencies that became evident as the BEAST 1 software evolved. Key among those deficiencies was the lack of post-deployment extensibility. BEAST 2 now has a fully developed package management system that allows third party developers to write additional functionality that can be directly installed to the BEAST 2 analysis platform via a package manager without requiring a new software release of the platform. This package architecture is showcased with a number of recently published new models encompassing birth-death-sampling tree priors, phylodynamics and model averaging for substitution models and site partitioning. A second major improvement is the ability to read/write the entire state of the MCMC chain to/from disk allowing it to be easily shared between multiple instances of the BEAST software. This facilitates checkpointing and better support for multi-processor and high-end computing extensions. Finally, the functionality in new packages can be easily added to the user interface (BEAUti 2) by a simple XML template-based mechanism because BEAST 2 has been re-designed to provide greater integration between the analysis engine and the user interface so that, for example BEAST and BEAUti use exactly the same XML file format.

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